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Advanced Control Systems (3 Credits) ç°ä»£æ§å¶ç³»ç»
Advanced Control Systems (3 Credits) 现代控制系统 Instructor Iven MAREELS ([email protected]) Melbourne School of Engineering, University of Melbourne Ying TAN ([email protected]) Melbourne School of Engineering, University of Melbourne Synopsis This subject provides an introduction to modern control theory with a particular focus on state-space techniques and optimal control. Students will study topics including: System modelling, state-space models, Lyapunov stability theory, and linearization; Controllability and observability of linear-time-invariant system, state feedback and pole placement, output feedback and observer design; Linear quadratic regulators, moving-horizon predictive control with constraints, and dynamic programming. This material is complemented by the use of software tools (e.g. MATALB/ Simulink) for computation and simulation. Offering 2015 Julmester Audience Year 3 & 4 Undergraduate and Graduate Students Classroom Room xxx, Teaching Bldg. No. XX, Peking University Schedule Class: 2-5 PM, M-F, July 6–24, 2015; Final Exam: 2-5 PM, July 25, 2015 Objective On completing this subject the student should be able to: Apply fundamental state-space techniques in the analysis and design of linear feedback control systems, as they arise in a variety of contexts; Formulate control engineering problems in terms of optimising an objective function subject to constraints; Use software tools to simulate and design the linear control systems. Topics Part 1: State-space modelling • linear time-invariant systems • nonlinear time-varying systems • linearization Part 2: Properties of linear time-invariant systems: controllability and observability Part 3: Controller design and implementation • Design full state feedback controller using pole-placement References Grading 1. 2. 3. 4. 5. 6. • Design an observer using separation principle Part 4: Internal model principle to track a reference or reject a disturbance Part 5: Optimal control • Optimization problem • Motivation of optimal control • Two methods to solve optimal control problem • LQR problem and its solution Part 6: Model Predictive Control G. Goodwin et al, Control System Design, Prentice Hall 2001 Feedback Control of Dynamic Systems. G. Franklin et al.5th ed. Addison-Wesley Modern Control Engineering. K. Ogata. 3rd ed. Prentice-Hall Modern Control Systems. R. Dorf et al. 10th ed. Pearson Education Feedback Systems: An Introduction for Scientists & Engineers K. Astrom and R. Murray (2008). Princeton Homework Assignment HW 1 HW 2 20% 10% 10% Workshop 20% Workshop 1 10% Workshop 2 10% Midterm Assessment 10% Final Assessment 40% Attendance & Discussion 10% Total 100%